Scientists predict who dies next in Game of Thrones : The Tribune India

Join Whatsapp Channel

Scientists predict who dies next in Game of Thrones

LONDON: Tyene Sand and Daenerys Targaryen are most likely to die in the final two seasons of the popular Game of Thrones TV series, scientists have predicted using a mathematical model.

Scientists predict who dies next in Game of Thrones


London

Tyene Sand and Daenerys Targaryen are most likely to die in the final two seasons of the popular Game of Thrones TV series, scientists have predicted using a mathematical model.

Researchers came up with a ranking model for the characters based on how likely they are to die.

"I am probably not alone in wondering which of my favourite characters are going to meet their ends, and which will live on to the next season," said Milan Janosov, PhD candidate at Central European University in Hungary.

The model finds the probabilities of each living well-known character passing away. Janosov ranked the characters in increasing order of survival according to the final prediction model.

According to the calculations, Tyene Sand — the illegitimate daughter of Prince Oberyn Martell — is most likely to die, followed by Daenerys Targaryen — who is hoping to win the Iron Throne.

Grey Worm, commander of Daenerys's Unsullied army, ranks third on the list of characters most likely to die next.

Tyrion Lannister and Jon Snow seem to be relatively safe.

Arya Stark and the Hound, already so close to death many times before, are both in dangerous positions.

Cersei, currently sitting on the Iron Throne, and Petyr Baelish, who’s doing his best to get there, seem to be in a much better position.

It seems Jorah Mormont will find the cure for his greyscale disease, and despite all he has been through, Theon Greyjoy will probably survive.

"Game of Thrones is a complex world in which social position and true friends seem to be quite important, so I quantified each character's social interaction patterns using the tools of network science," Janosov.

"I then predict their fate using machine learning methods," he said.

Researchers used the show's subtitles, collected in dialogue format. They constructed the aggregated network of the realm's social system.

In this network each node represents a character of the story, and the weight of the link between each pair of characters indicates the strength of their social interaction.

Researchers considered scenes to be the elementary units of the social interaction — an average episode contains about twenty of them.

This means that everyone who appeared once together in the same scene has a tie with strength of one, and within a scene everyone is connected with everyone.

In other words, scenes are complete graphs, or cliques, increasing the tie strength between all pairs of people present by one.

By calculating these scene-level complete networks and then aggregating them, researchers arrived to the global social network of Westeros, which has almost 400 nodes and more than 3,000 edges.

Using machine learning and data from characters that have already died, researchers predicted who is going to die in the near future. — PTI

Top News

Arvind Kejriwal to be produced before Delhi court today as 6-day ED custody ends

Excise policy case: Delhi court extends ED custody of Chief Minister Arvind Kejriwal till April 1

In his submissions, Kejriwal said, ‘I am named by 4 witnesse...

Delhi High Court dismisses PIL to remove Arvind Kejriwal from CM post after arrest

Delhi High Court dismisses PIL to remove Arvind Kejriwal from CM post after arrest

The bench refuses to comment on merits of the issue, saying ...

US makes another remark on Kejriwal's arrest, reacts to freezing of Congress bank accounts

US makes another remark on Arvind Kejriwal's arrest, reacts to freezing of Congress bank accounts

We encourage fair, transparent and timely legal processes, s...

Explainer: Why BJP is flying solo in Punjab and Odisha

Explainer: Why BJP is flying solo in Punjab and Odisha

A multi-cornered contest is always advantageous for BJP; it ...


Cities

View All